Data di Pubblicazione:
2025
Citazione:
An Equivalent Single Spiking Neuron Model of the Working Memory / N. Ajith, A. Rajendran, G. Naldi, E. D'Angelo, S. Diwakar - In: 2025 International Conference on Cognitive Computing in Engineering, Communications, Sciences and Biomedical Health Informatics (IC3ECSBHI) / [a cura di] M.A. Ansari, K. Pal, S. Kumar, A.S. Baghel, M.T. Ashraf. - Prima edizione. - [s.l] : IEEE, 2025. - ISBN 979-8-3315-1852-3. - pp. 570-574 (( convegno International Conference on Cognitive Computing in Engineering, Communications, Sciences and Biomedical Health Informatics, IC3ECSBHI tenutosi a Greater Noida nel 2025 [10.1109/ic3ecsbhi63591.2025.10991192].
Abstract:
In this paper, we propose a biologically plausible computational working memory (WM) model implemented using a spiking neuron model representing a predictable WM mechanism in a single neuron. Empirical evidence from single neuron animal brain recordings has shown that WM is processed in a neuron model by encoding associations and exhibiting persistent activity. The model implemented using an adaptive exponential integrate and fire neuron model, was able to replicate the dynamics observed in WM tasks, such as the Delayed Match to Sample (DMS) paradigm. The input patterns were encoded as numbers, representing the spike train patterns in the neurons, and the frequencies of transient discharges of corresponding neurons were the outputs. By simulating this task, the model demonstrated how cognitive processes such as encoding, maintaining, and retrieving information during the delay period could be performed by single neurons. The model was examined by modifying parameters including the duration of delay, number of inputs, and retrieval probe count attributed to cognitive load. Through this soft computing-based approach, our simulations allow us to elaborate equivalents in emergent dynamics, including persistent neuronal activity during the delay period.
Tipologia IRIS:
03 - Contributo in volume
Keywords:
Cognitive load; DMS paradigm; soft computing; Spiking neuron model; working memory
Elenco autori:
N. Ajith, A. Rajendran, G. Naldi, E. D'Angelo, S. Diwakar
Link alla scheda completa:
Titolo del libro:
2025 International Conference on Cognitive Computing in Engineering, Communications, Sciences and Biomedical Health Informatics (IC3ECSBHI)